The number of rooftop photovoltaic (PV) systems has significantly increased in recent years around the globe, including in Australia. This trend is anticipated to continue in the next few years. Given their high share of generation in power systems, detecting malfunctions and abnormalities in rooftop PV systems is essential for ensuring their high efficiency and safety. In this paper, we present a novel anomaly detection method for a large number of rooftop PV systems installed in a region using big data and a time series complexity measure called weighted permutation entropy (WPE). This efficient method only uses the historical PV generation data in a given region to identify anomalous PV systems and requires no new sensor or smart device. Using a real-world PV generation dataset, we discuss how the hyperparameters of WPE should be tuned for the purpose. The proposed PV anomaly detection method is then tested on rooftop PV generation data from over 100 South Australian households. The results demonstrate that anomalous systems detected by our method have indeed encountered problems and require a close inspection. The detection and resolution of potential faults would result in better rooftop PV systems, longer lifetimes, and higher returns on investment.
翻译:近年来,包括澳大利亚在内的全球各地的屋顶光伏发电系统数量大幅增加,预计这一趋势将在今后几年继续。鉴于其在发电系统中的发电比例很高,发现屋顶光伏发电系统的故障和异常对于确保其高效和安全性至关重要。在本文中,我们介绍了一个区域安装的大量屋顶光伏发电系统的新颖异常检测方法,该系统使用大数据和称为加权变异性(WPE)的时间序列复杂度测量。这一高效方法仅使用特定区域的历史光伏发电数据来识别异常光伏发电系统,不需要新的传感器或智能装置。我们使用真实世界的光电发电数据集,讨论如何为此调整WPE的超参数。拟议的光电极异常检测方法随后在100多个南澳大利亚家庭的屋顶光电发电数据上进行测试。结果显示,我们方法检测的异常系统确实遇到问题,需要仔细检查。发现和解决潜在的错误将会导致更好的屋顶光电系统、更长的寿命和更高的投资回报率。